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In semantics, the best-known types of semantic equivalence are dynamic equivalence and formal equivalence (two terms coined by Eugene Nida), which employ translation approaches that focus, respectively, on conveying the meaning of the source text; and that lend greater importance to preserving, in the translation, the literal structure of the source text.
Untranslatability is the property of text or speech for which no equivalent can be found when translated into another (given) language. A text that is considered to be untranslatable is considered a lacuna, or lexical gap. The term arises when describing the difficulty of achieving the so-called perfect translation.
According to Lawrence Venuti, every translator should look at the translation process through the prism of culture which refracts the source language cultural norms and it is the translator’s task to convey them, preserving their meaning and their foreignness, to the target-language text. Every step in the translation process—from the ...
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He stated that semantic translation is one that is source language bias, literal and faithful to the source text and communicative translation is target language bias, free and idiomatic. [20] A semantic translation's goal is to stay as close as possible to the semantic and syntactic structures of the source language, allowing the exact ...
The term Multilingual Information Retrieval (MLIR) involves the study of systems that accept queries for information in various languages and return objects (text, and other media) of various languages, translated into the user's language.
Machine translation is use of computational techniques to translate text or speech from one language to another, including the contextual, idiomatic and pragmatic nuances of both languages. Early approaches were mostly rule-based or statistical. These methods have since been superseded by neural machine translation [1] and large language models ...
One of the main features of transfer-based machine translation systems is a phase that "transfers" an intermediate representation of the text in the original language to an intermediate representation of text in the target language. This can work at one of two levels of linguistic analysis, or somewhere in between. The levels are: